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Active Prior Tactile Knowledge Transfer for Learning Tactual Properties of New Objects

机译:主动先验触觉知识转移以学习新物体的触觉特性

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摘要

Reusing the tactile knowledge of some previously-explored objects (prior objects) helps us to easily recognize the tactual properties of new objects. In this paper, we enable a robotic arm equipped with multi-modal artificial skin, like humans, to actively transfer the prior tactile exploratory action experiences when it learns the detailed physical properties of new objects. These experiences, or prior tactile knowledge, are built by the feature observations that the robot perceives from multiple sensory modalities, when it applies the pressing, sliding, and static contact movements on objects with different action parameters. We call our method Active Prior Tactile Knowledge Transfer (APTKT), and systematically evaluated its performance by several experiments. Results show that the robot improved the discrimination accuracy by around 10% when it used only one training sample with the feature observations of prior objects. By further incorporating the predictions from the observation models of prior objects as auxiliary features, our method improved the discrimination accuracy by over 20%. The results also show that the proposed method is robust against transferring irrelevant prior tactile knowledge (negative knowledge transfer).
机译:重用某些先前探索过的对象(先前的对象)的触觉知识有助于我们轻松地识别新对象的触觉特性。在本文中,我们使配备了多模态人工皮肤的机械臂(如人类)在了解新物体的详细物理特性时能够主动传递先前的触觉探索性动作体验。这些经验或以前的触觉知识,是通过对机械手进行按压,滑动和静态接触运动时,它们从多种感觉模式中感知到的特征观察结果建立起来的,该机械手具有不同的动作参数。我们将我们的方法称为主动先验触觉知识转移(APTKT),并通过几次实验对其性能进行了系统评估。结果表明,当仅使用一个训练样本并具有先前物体的特征观测值时,该机器人将识别精度提高了约10%。通过将来自先验对象的观察模型的预测进一步纳入作为辅助特征,我们的方法将判别精度提高了20%以上。结果还表明,所提出的方法对于转移无关的先前触觉知识(负知识转移)具有鲁棒性。

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